zahta / graph_ml
Course: Graph Machine Learning focuses on the application of machine learning algorithms on graph-structured data. Some of the key topics that are covered in the course include graph representation learning and graph neural networks, algorithms for the world wide web, reasoning over knowledge graphs, and social network analysis.
☆17Updated last year
Related projects ⓘ
Alternatives and complementary repositories for graph_ml
- Repository for GNN tutorial using Pytorch and Pytorch Geometric (PyG) for ODSC 2021☆40Updated 3 years ago
- ☆53Updated 3 months ago
- here you can find the material used for our Tutorials☆97Updated 2 years ago
- My solutions for Stanford University course CS224W: Machine Learning with Graphs Fall 2021 colabs (GNN, GAT, GraphSAGE, GCN)☆28Updated 2 years ago
- Repository associated to the paper: "Explaining the Explainers in Graph Neural Networks: a Comparative Study"☆34Updated last year
- Uncertainty Quantification over Graph with Conformalized Graph Neural Networks (NeurIPS 2023)☆72Updated last year
- List of papers on NeurIPS2023☆88Updated last year
- Scalable Graph Neural Networks with Deep Graph Library☆22Updated 3 years ago
- S3GRL is a scalable SGRL method for faster link prediction using efficient precomputations.☆12Updated last year
- GraphXAI: Resource to support the development and evaluation of GNN explainers☆173Updated 6 months ago
- My Solution to Assignments of CS234(Stanford / Fall 2019)☆15Updated 4 years ago
- This repository holds code and other relevant files for the Learning on Graphs 2022 tutorial "Graph Rewiring: From Theory to Applications…☆53Updated last year
- Causality-Aware Local Interpretable Model Agnostic Explanations☆11Updated 2 months ago
- Temporal Graph Benchmark project repo☆185Updated this week
- Implementation of a heterogeneous version of the GNN method MPNN with running code to try it out.☆13Updated 7 months ago
- A collection of papers studying/improving the expressiveness of graph neural networks (GNNs)☆127Updated last year
- Code for our paper "Attending to Graph Transformers"☆80Updated last year
- Graph Positional and Structural Encoder☆42Updated last month
- This is the official repository for our paper KAGNNs: Kolmogorov-Arnold Networks meet Graph Learning.☆31Updated this week
- Code for paper "Towards Training GNNs using Explanation Directed Message Passing"☆15Updated last year
- Dynamic Graph Benchmark☆68Updated last year
- ☆30Updated last year
- ☆79Updated 2 years ago
- Influence-Based Mini-Batching (IBMB), as proposed in "Influence-Based Mini-Batching for Graph Neural Networks" (LoG 2022)☆19Updated last year
- Explanation method for Graph Neural Networks (GNNs)☆60Updated 2 years ago
- GraphAny: A foundation model for node classification on any graph.☆115Updated 5 months ago
- GraphFramEx: a systematic evaluation framework for explainability methods on GNNs☆37Updated 7 months ago
- Materials for SDM 2023 tutorial: Augmentation Methods for Graph Learning☆20Updated last year
- Scalable and privacy-enhanced graph generative models for benchmark graph neural networks☆18Updated last year